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Capturing Heterogeneity in Gene Expression Studies by Surrogate Variable Analysis

机译:通过替代变量分析捕获基因表达研究中的异质性

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摘要

It has unambiguously been shown that genetic, environmental, demographic, and technical factors may have substantial effects on gene expression levels. In addition to the measured variable(s) of interest, there will tend to be sources of signal due to factors that are unknown, unmeasured, or too complicated to capture through simple models. We show that failing to incorporate these sources of heterogeneity into an analysis can have widespread and detrimental effects on the study. Not only can this reduce power or induce unwanted dependence across genes, but it can also introduce sources of spurious signal to many genes. This phenomenon is true even for well-designed, randomized studies. We introduce “surrogate variable analysis” (SVA) to overcome the problems caused by heterogeneity in expression studies. SVA can be applied in conjunction with standard analysis techniques to accurately capture the relationship between expression and any modeled variables of interest. We apply SVA to disease class, time course, and genetics of gene expression studies. We show that SVA increases the biological accuracy and reproducibility of analyses in genome-wide expression studies.
机译:明确表明遗传,环境,人口和技术因素可能对基因表达水平产生实质性影响。除了感兴趣的测量变量外,由于未知,无法测量或过于复杂以至于无法通过简单模型捕获的因素,也倾向于存在信号源。我们表明,未能将这些异质性来源纳入分析中可能会对研究产生广泛而有害的影响。这不仅可以降低功率或诱导基因间的有害依赖性,而且还可以将虚假信号源引入许多基因。即使对于设计良好的随机研究也是如此。我们引入“代理变量分析”(SVA)来解决表达研究中由异质性引起的问题。 SVA可以与标准分析技术结合使用,以准确捕获表达与任何感兴趣的模型变量之间的关系。我们将SVA应用于疾病类别,时程和基因表达研究的遗传学。我们表明,SVA增加了全基因组表达研究中分析的生物学准确性和可重复性。

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